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Sustainable Supply Chain Management and the transition towards a Circular Economy: Evidence and some Applications
Andrea Genovese, Adolf A. Acquaye, Alejandro Figueroa, S.C. Lenny Koh
www.elsevier.com/locate/omega
PII:DOI:Reference:
S0305-0483(15)00132-2 http://dx.doi.org/10.1016/j.omega.2015.05.015 OME1556
To appear in: Omega
Received date: 13 October 2014Accepted date: 1 May 2015
Cite this article as: Andrea Genovese, Adolf A. Acquaye, Alejandro Figueroa, S. C. Lenny Koh, Sustainable Supply Chain Management and the transition towards a Circular Economy: Evidence and some Applications, Omega, http://dx.doi.org/10.1016/j.omega.2015.05.015
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Sustainable Supply Chain Management and the transition towards a Circular Economy:Evidence and some Applications
Andrea Genovesea,*, Adolf A. Acquayeb, Alejandro Figueroaa, S.C. Lenny Koha
a Logistics and Supply Chain Management Research Centre, Management School, University of Sheffield, Sheffield, UK b
Kent Business School, University of Kent, Canterbury, CT2 7PE, UK
* Corresponding Author (Tel: +44114 222 3347; Email: a.genovese@shef.ac.uk)
Abstract:
In the last decades, green and sustainable supply chain management practices have been
developed, trying to integrate environmental concerns into organisations by reducing
unintended negative consequences on the environment of production and consumption
processes. In parallel to this, the circular economy discourse has been propagated in the
industrial ecology literature and practice. Circular economy pushes the frontiers of
environmental sustainability by emphasising the idea of transforming products in such a
way that there are workable relationships between ecological systems and economic
growth. Therefore, circular economy is not just concerned with the reduction of the use of
the environment as a sink for residuals but rather with the creation of self-sustaining
production systems in which materials are used over and over again.
Through two case studies from different process industries (chemical and food), this paper compares
the performances of traditional and circular production systems across a range of indicators. Direct,
indirect and total lifecycle emissions, waste recovered, virgin resources use, as well as carbon maps
(which provide a holistic visibility of the entire supply chain) are presented. The paper asserts that an
integration of circular economy principles within sustainable supply chain management can provide
clear advantages from an environmental point view. Emerging supply chain management challenges
and market dynamics are also highlighted and discussed.
Key Words: Green Supply Chain Management, Circular Economy, Product Lifecycle Analysis, Environmental Sustainability, Decision Support
1
1. Introduction
Circular economy (McDonough and Braungart 2000) represents a theoretical concept which aims at
creating an industrial system that is restorative by intention (Srivastava, 2007; Seuring and Müller,
2008); in recent times, business have become more aware about such concept, seeing it as a
mechanism that can be used to create competitive advantage (Ellen Macarthur Foundation 2013).
As such, the paper seeks to address the implications of these practices in a supply chain context
from environmental, market, policy and societal points of view.
The recent embracing of new business models that encourage design for re-use and improve
materials recovery represents a departure from historic production and consumption systems. In
fact, classical economic theory posits that disproportionate production and consumption patterns
represent a natural or desirable outcome since they drive the creation of wealth resulting from
economic activity (including the flow and use of raw materials and resources) and trade of goods and
services (Smith and Nicholson 1887). However, it has also been established that economic and
production systems cannot be separated from the environment, with contemporary ecological
economic theory emphasising the increasing impacts of human activities on the natural environment
(Costanza 1984; Harte 1995). This phenomenon has led to the crossing of certain biophysical
thresholds (Rockström et al 2009). As a result, the emphasis on sustainability, a concept which is
now integrated in most disciplines since the publication of the Brundtland Report by the World
Commission on Environment and Development (1987), has become even more important in the
present time.
The increasing influence of sustainability in supply chain management and operations
practices can also be attributed to the fact that, in addition to increased demands of strong
economic performance, organizations are now held responsible for the environmental and
social performance by major stakeholders (Zhu et al. 2005; Walker et al., 2014). As such,
sustainability has forced the redefinition of the operations function (de Burgos Jiménez and
Lorente 2001). Additionally, sustainable supply chain management has become a strategic
process enabling firms to create competitive advantage (Sivaprakasam 2014). This
assertion is backed by Porter’s (1991) hypothesis, which states that the conflict between
environmental sustainability and economic competitiveness is a false dichotomy based on
a narrow view of the sources of prosperity and a static view of competition.
Within this context, in the last decades, sustainable supply chain management theories have been
emerging (inter alia: Walton et al. 1998; Seuring and Müller 2008; Sarkis et al. 2011). These
2
frameworks are underpinned primarily by product lifecycle influences and operational influences
(Sarkis, 2003). Savaskan et al. (2004) suggest that the requirement to take a holistic view of the
whole product supply chain is a fundamental step for establishing greener and more sustainable
production systems (Genovese et al. 2013), based on re-using and re-manufacturing materials (Zhu
et al. 2008). These systems could also lead to the creation of new competitive business models
(Kleindorfer et al. 2005). Such models could be based on the paradigm of cradle-to-cradle,
encouraging the use of raw materials known as technical and biological nutrients, which do not have
a negative impact on the environment, have an entirely beneficial impact upon ecological systems
and return to the ecosystem without treatments (Braungart et al. 2007).
Interestingly, the concepts of green and sustainable supply chain management have been
developed in parallel (although there are some fundamental differences in principles) to the circular
economy discourse, which has been propagated in the industrial ecology literature and practice for a
long time (Lowe 1993; Ehrenfeld 1995). In fact, sustainable supply chain management seeks to
integrate environmental concerns into organisations by minimizing materials’ flows or by reducing
unintended negative consequences of production and consumption processes (Srivastava, 2007;
Srivastava, 2008; Sarkis et al. 2011; Dong et al. 2014). On the other hand, as described by
McDonough et al. (2002), circular economy pushes the frontiers of environmental sustainability by
emphasising the idea of transforming products in such a way that there are workable relationships
between ecological systems and economic growth (Francas and Minner, 2007). This is achieved by
creating a paradigm shift in the redesign of material flows based on long-term economic growth and
innovation (Braungart et al. 2007). It is implied that circular economy is not just concerned with the
reduction of the use of the environment as a sink for residuals (Andersen 2007) or with the delay of
cradle-to-grave material flows (as sustainable supply chain management suggests) but rather with
the creation of metabolisms that allow for methods of production that are self-sustaining, true to
nature and in which materials are used over and over again (McDonough and Braungart 2000).
Finding ways to align sustainable supply chain strategies to circular economy principles has
therefore become important if the boundaries of environmental sustainability are to be pushed.
Additionally, circular economy is primarily concerned with material flows in economic systems
(Moriguchi 2007; Mathews and Tan 2011) through a paradigm shift in production philosophy; this
therefore leaves other important issues such as understanding environmental impacts (such as the
ones related to energy usage and carbon emissions) and the implications of such impacts
3
unresolved. Consequently, the main research questions which would be addressed in this paper are:
• How can sustainable supply chain management be enhanced by aligning it to the circular economy concept?
• What are the environmental implications of circular production systems in terms of carbon emissions, resource use and waste recovered when compared to a traditional linear production paradigm?
• What are the potential market dynamics, policy and societal implications that could arise by the implementation of circular production systems? What kind of challenges do they pose?
To answer to these questions, based on the theoretical constructs of circular economy, two case
studies (based on product supply chains from different process industries) are analysed. The
findings would be used to provide insight to the analysis and discussions. Chosen case studies are
concerned with food (specifically, the waste cooking oil supply chain) and chemical (ferrous sulphate
supply chain) industries. Greenhouse gas emissions (in the following, simply referred to as carbon
emissions) were selected as the main environmental impact indicator because of their prominence in
contemporary literature and as a result of easy access to data.
Food and chemical supply chains were chosen for this study because (apart from the fact
that they are two very different process industries) both supply chains have been known to
have significant consequences on the environment. Additionally, according to Beamon
(2008) limited research has been carried out on the food processing sector mainly because
of the complexity of the supply chain, hence leaving important issues involving waste, re-
use of resources, greenhouse gas (GHG) emissions unaddressed (French and LaForge
2006). Regarding the chemical industry supply chain the OECD (2008) reports that despite
it being one of the most regulated of all industries, there is a potential for a negative impact
at every stage of its lifecycle. This situation is exacerbated by the increase use of
chemicals in major economic development sectors (UNEP 2012).
To address these issues, the paper is structured as follows: in Section 2, a literature review is
conducted on the principles of circular economy, on frameworks for evaluating the environmental
performance of supply chains and on supply chain configurations. In Section 3, methodological notes
and generalities about the case studies are presented. Section 4 addresses
4
the key findings, analysis and discussions of the study leading to the concluding remarks reported in Section 5.
2. Theoretical Backgrounds
2.1 The Circular Economy Paradigm
Environmental economics is concerned with identifying and solving problems related to damage and
pollution associated with the flow of residuals (Fisher, 1981; Andersen 2007). In this context, the
principles underlining circular economy suggest that, by assuming the planet as a closed system, the
amount of resources depleted in a period is equal to the amount of waste generated in the same
period. This principle is thus subject to the Laws of Thermodynamics (Victor 1991; Robèrt et al.
1997), although in practice this is not the case because Daly (1985) reiterates that the circular flow of
exchange (which consist of the physical flow of matter and energy) is ultimately linear and
unidirectional beginning with low entropy resources from the environment and ending with the
pollution of the environment with high entropy waste. Despite these limitations, due to basic physical
laws, the paradigm of circular economy seeks to continually sustain the circulation of resources and
energy within a closed system (the planet) thus reducing the need for new raw material inputs into
production systems. The principles of circular economy thus reveal an idealistic ambition of pushing
the boundary of sustainable supply chain management practices. Such practices, indeed, are
ultimately concerned with the reduction (or the delay) of unintended negative impacts on the
environment due to cradle-to-grave material flow (Prahinski and Kocabasoglu, 2006). Thanks to
initiatives such as The Circular Economy 100 (Ellen Macarthur Foundation, 2013), a number of
companies have embraced these concepts also as a mechanism for collective problem solving. The
circular economy paradigm has then provided a framework by means of which businesses operating
within the same supply network (and beyond) can engage with sustainability activities, enabling best
practices to be adopted.
In this context, the concept of Reverse Supply Chain Management has been
developed (French and LaForge 2006; Li et al., 2014) as an adaptation of circular
economy principles to supply chain management. Indeed, a reverse supply chain
includes activities dealing with product design, operations and end-of-life management
in order to maximize value creation over the entire lifecycle through value recovery of
after-use products either by the original product manufacturer or by a third party.
5
Reverse supply chains are either open-loop or closed-loop. Basically, open-loop supply chains
involve materials recovered by parties other than the original producers who are capable of reusing
these materials or products. On the other hand, closed-loop supply chains deal with the practice of
taking back products from customers and returning them to the original manufacturer for the
recovery of added value by reusing the whole product or part of it (French and LaForge 2006).
Because of the benefits of reverse supply chains, it is unsurprising that manufacturing industries
have been placing, recently, a lot more emphasis on achieving sustainable production by shifting
from end-of-pipe solutions to a focus on whole lifecycle assessments and integrated environmental
strategies and management systems (OECD 2009).
Early contributors to the design of circular supply chains include Thierry et al. (1995),
who designed an integrated supply chain model in which product returns from the end-
user undergo a recovery operation (such as re-use, repair, remanufacture or
recycling); hence products are integrated back into the ‘forward’ supply chain.
Despite its idealistic principles, the concept of circular economy has still implications of
environmental externalities. This is because external effects always occur as a result of transactions
between different entities (Perrings 2005), represented, in this case, by the flow of materials and
resources between different production systems or different stages of a same production system.
Methodologies that can be used to evaluate the environmental implications of such production
systems are generally based on the principles of lifecycle assessment (LCA).
2.2 Frameworks for Environmental Assessment of Product Supply Chains
Lifecycle assessment (LCA) is a widely applied methodology in the context of environmental analysis
to support cleaner production (Yong 2007) and greener supply chains (Acquaye et al. 2014). UNEP
(2012) have also reported that such methodology can be utilized to assess resource use throughout
the lifecycle of a product, indicating precisely where inefficiencies exist, and for analysing
environmental impacts taking into account the whole amount of goods and services needed to
manufacture and deliver that particular product (Luo et al. 2009). The LCA framework for a product,
process or activity/operation can bring together the impacts of collaborative supply chain partners
arising from extraction and processing of raw materials; manufacturing, transport and distribution; re-
use, maintenance recycling and final disposal. LCA is therefore a holistic approach which brings
environmental impacts into one consistent framework, wherever and whenever these impacts have
occurred or will occur (Guinee et al.
6
2001). Adopting LCA provides useful advantages in supply chain management pra ctice (Acquaye et
al., 2015). Indeed, production paths associated with high energy and resource u sage, pollution and
emission of greenhouse gase s (here synthetically defined as carbon hot-spots) ca n be identified
and appropriate intervention strategies devised and implemented in order to address them.
Two basic LCA modelling techniques can be used to examine the environment al impact of a supply chain production system, namely the process (bottom-up) models or the macro-economic environmental (top-down) models (IPCC 2001).
2.2.1 Bottom-Up Models: Process Lifecycle Assessment Methodology
Traditional (or process) LCA methodology is highly defined by ISO standards (International
Standard Organisation 1998), working by creating a system boundary dictated by the aims
of the study and accounting for individual impacts assessments (for instance, carbon-
equivalent emissions, as used in this paper) within the system (Refer to Figure 1 for a
schematic representation of a typical process LCA system). This methodology has been
described as incomplete, primarily because it is not possible to ac count for the
theoretically infinite number of inputs of very complex product supply chains into the LCA
system (Crawford 2008; Rowley et al. 2009). However, because of the specificity of
individual inputs within the defined LCA system boundary, the environmental im pacts of
those inputs can be more accurately determined (Lenzen and Crawford 2009). Extending
this methodology to address its limitations in terms of a restricted LCA system boundary,
but leveraging on its advantage in increasing the accuracy is therefore crucial when setting
u p environmental assessment models of product supply chains (Acquaye et al. 2011).
Figure 1: Schem atic representation of a typical process LCA system.
2.2.2 Top-Down Models: Environmental Input-Output Methodology
7
Environmental Input-Output (EIO) is a LCA methodology that uses country and/or regional
input–output trade data coupled with sector-level emissions to calculate environmental
impacts, yielding an all-encompassing result within an extended system boundary
(Berners-Lee et al. 2011; Acquaye et al. 2012). However, it has the drawback of being less
specific due to aggregation of a range of products or services in one sector (Mongelli et al.
2005) and the assumptions of proportionality and homogeneity (Acquaye and Duffy 2010).
The EIO framework is a macro-economic model based on a generic top-down model of the economy
(Wiedmann et al. 2007), thus simulating the whole supply chain at an economy-wide level, along
with its sectorial changes and production and consumption patterns (Barrett and Scott 2012). The
whole economy can therefore be described as an aggregation of different sectors as shown below in
the EIO framework (Figure 2). In the manufacturing of a product, any resource input used directly or
indirectly at any tier of the supply chain can be traced to one of these economic sectors. As such, the
EIO framework provides a complete system boundary for the environmental assessment of the
product supply chain (Wiedmann 2009; Majeau-Bettez et al. 2011). Thus, the EIO offers a global (or
multi-regional) supply chain perspective to the environmental analysis, by extending the system
boundary in such a way to account for the very large number of supply chain inputs.
Figure 2: Whole economy representation based on an EIO framework.
2.2.3 Integrating Bottom-Up and Top-Down Models: Hybrid LCA Methodology
The combination of process (bottom-up) and macro-economic (top-down) approaches can offer a
third methodology (the so-called hybrid methodology) that integrates the process and environmental
input-output methodology into a more consistent and robust framework based on a whole lifecycle
assessment principle. This is because the hybrid methodology integrates the advantages of both
process LCA and environmental input-output methodologies while
8
overcoming their respective limitations. Indeed, process LCA is complemented with EIO
LCA which is used to estimate missing indirect inputs not included in the original system
boundary (Lenzen and Dey 2000; Wiedmann 2009). The integration of the two basic
approaches leads to the development of a more robust methodology; that is the Hybrid
LCA. In the Hybrid LCA approach used in this paper, we adopt a multi-regional input-output
(MRIO) framework in which EIO is interconnected with the matrix representation of the
physical process LCA system. As a result, in the upstream and downstream inputs into the
LCA system, where there are no or better process LCA data available, EIO estimates are
used (Suh and Huppes 2005). A detailed explanation of the Hybrid LCA methodology is
provided in Acquaye et al. (2011) and Wiedmann et al. (2011).
It is an established fact that the Hybrid LCA methodology has been well promoted.
However, because of the inherent complexity of product supply chains (as a result of
the globalized nature of product, process and service inputs), hybrid LCA must be
developed not just using country specific IO models, but a multi-regional IO framework.
Additionally, the results should be presented in such a way that they have direct benefit
and relevance to supply chain management practices. This paper therefore seeks to
use these methodological constructs to answer the posed research questions.
3. Research Methodologies and Applications
3.1 General Input-Output Model
An input-output (IO) model records the flows of resources (products and services) from each
industrial sector considered as a producer to each of the other sectors considered as consumers
(Miller and Blair 2009). An IO model is therefore a matrix representation of all the economic
(production and consumption) activities taking place within a country, region or multi-region.
The general input-output methodology has been well documented in literature (ten Raa 2007;
Ferng 2009). In the general IO notation, it can be shown that:% = ( − ) ∙
In this equation, = [] describes all the product requirements ( ) needed by industry () to produce
a unit monetary output. It is called the technical coefficient matrix because it describes the
technology of a given industry which is characterised by the mix of supply chain inputs
9
(including raw materials, machinery, energy, goods, transport, services, etc.) required
to produce a unit output (Barrett and Scott, 2012). The vector represents the total
output in a given sector. It is equal to the sum of those products consumed by other
industries and those consumed by the final demand . ( − ) is referred to as the Leontief
Inverse matrix and ( − ) ∙ describes the total (direct and indirect) requirements needed
to produce the output, for a given final demand (Miller and Blair 2009).
Hence, in terms of supply chain visibility (Vachon and Klassen 2006), the supply chain
of a given product can be set up in such a way that not only direct inputs are captured,
but also, irrespective of the origin of these inputs (domestic or imported), indirect ones
can be considered in the analysis. This is a result of the extended system boundary of
the IO framework (Acquaye and Duffy 2010; Mattila et al. 2010; Wiedmann, et al.
2011). As a result, a whole lifecycle perspective, which is a key principle of sustainable
supply chain management, is adopted (Carter and Easton 2011).
3.1.1Multi-Regional Input-Output (MRIO) Hybrid LCA model
The MRIO model used in environmental input-output analysis is usually presented as a 2-region
model (see for instance McGregor et al. (2008) who used a two-region MRIO model to enumerate
CO2 emissions embodied in interregional trade flows between Scotland and the rest of the UK). In
this paper, the Supply and Use format within a two-region (UK and the Rest of the World - in the
following referred to as ROW) IO framework is adopted (see Figure 3 for an exemplification). As
reported by EUROSTAT (2008), the advantages of Supply and Use tables as an integral part of the
national accounts lies in the fact that they have a stronger level of detail which ensures a higher
degree of homogeneity of the individual product and therefore better possibilities for determining
categories of uses and consequently the environmental impacts. Additionally, it enables to perform a
split between emissions associated with supply chain inputs as a result of UK production and ROW
production. The methodology, developed within the integrated Hybrid LCA framework, (Suh and
Huppes, 2005) is presented below. The following Equation 1 represents the general expression of
the model (see also Acquaye et al., 2011):
#$ % $ −)
Total Emissions Impact = " % #&'( "
−* ( − &')(
+ 0 - (1)10
Where:
provides the square matrix representation of process inventory (dimension: s × s)$
&' represents the MRIO technology coefficient matrix (dimension: m × m)
represents an identity matrix (dimension:m × m)
* provides the matrix representation of upstream cut-offs to the process system
)
(dimension:m × s)
reproduces the matrix of downstream cut-offs to the process system (dimension:s × m)
#$ represents the process inventory environmental extension matrix. CO2-eq emissions are
#&'diagonalised (dimension:s × s)represents the MRIO environmental extension matrix. CO2-eq emissions are diagonalised
(dimension:m × m)
(s + m, 1)
represents the functional unit column matrix with dimension or where all
+0- entries are 0 except yFollowing on this, (A45) is presented in the Supply and Use format as shown below:
UK UK RoW
Industries Products Industries
UK Industries
Domestic
Use
UK Products
Domestic
Exports
Supply
RoW Industries
RoW Products
Imports
RoW
Supply
Each matrix is of dimension224 x 224 economic sectors
Figure 3: Supply and Use Input-Output Framework
In a matrix representation, this becomes
11
8% (*9)* % %
&' =
(*9):%
(*9)#=< %%
% (>?@)*%
(*9);< % &A$ %Where A45 becomes the 2-region MRIO technical coefficient matrix. This includes the respective
technical coefficient matrices for UK Domestic Use,, (EF)E, UK Domestic Supply, (EF)G, UK
Export to ROW, (EF)HIJ, ROW Use, (KLM)E UK Imports from ROW, (EF)NOJ and ROW
Supply to ROW, (KLM)G. All of the individual matrices are of dimensions 224 224;
hence, A45 and (the Identity Matrix) are therefore of dimension 896 896..
The Technical Coefficient Matrix for UK Imports from ROW, (EF)NOJ , for example, is
defined as:
% = UV (KLM,EF) W(EF)NOJ
Where V(KLM,EF) represents elements of UK Imports input-output table from the
ROW region indicating the input of product () from ROW into the industry () of the
UK, while represents the total output of UK industry, ().
Referring back to Equation (1), A[ can be described as a matrix representation of the Process
LCA framework. For \ different types of supply chain inputs into the Process LCA system, $
would be of dimension (\ + 1) (\ + 1); where there are \ supply chain product inputs and 1 main
product output. Let V] represents the quantity of supply chain inputs used for any given input, \
and ^_,` the elements of $ so that $ = a^_,`b where c (rows) represents inputs and d (columns)
processes of those inputs in the Process LCA system. A simplified way of formulating
mathematically the Process LCA system is presented below:
$ = a^_,`b =
^]e_,`
,]e_ = 1
∀ c gdghi jkc c = \ + 1^_,]e = −V_
^_,` = 0 j c ≠ d12
3.1.2 Environmentally Extended MRIO Hybrid Model
The Input-Output analysis component of the hybrid model can be extended to an Environmental Input-Output (EIO) lifecycle assessment (LCA) to generate results which can be used in the assessment of product supply chain emissions.
Given that = ( − ) ∙ defines the total (direct and indirect) requirements needed to
produce an output for a given final demand, ; the EIO LCA can therefore be
defined in a generalised form as:
Where #o
n = #o ∙ = #o ∙ ( − ) ∙
is the direct emissions intensity (kg CO2-eq/£) of the IO industries and #o ∙
( − ) the total (direct and indirect) emissions intensities (kg CO2-eq/£).
By extension, the matrix #o expressed in terms of the MRIO Supply and Use
structure becomes:q*9
% % %
#o = p
#
% % % %r% % # %
% %
q>?@
%# # %
Where q*9 and q>?@ are respectively the diagonalised direct emissions intensity (Sectoremissions in kg CO2-eq per total output in £) of each industrial sector in the UK and the ROW.
Similarly, the environmental extended component for the process LCA system # s
in the hybrid model (Refer to Equation 1) is defined as a diagonalized matrix of the
respective environmental values g] of each input \ into of the process LCA system
obtained by multiplying product input quantities V] and emissions intensities g(]t)].#s = [gu]]
13
Where ∀ \ into the process lCA system;
g] = V] ∙ g(]t)]
As described earlier, represents the final demand; in this instance, the output of
the LCA system. This final demand matrix is represented as a column matrix.
The generic matrix dimension or size of has already being established to be (s + m, 1).
However, specific to this study, this dimension equals ((\ + 1 + 896), 1 ), where \ is the
number of supply chain product inputs for the process LCA system and 896 the
dimension of the MRIO matrix. Since is a column matrix, let j(v, ) be the elements of
such that m represents the row elements of the single column (represented as 1).
Hence: = ajv, b; xℎgcg jv, = 1 j m = \ + 1 \m 0, ∀ kiℎgc m
The environmentally extended MRIO model (with each part of the model described in
Section 3.1) is the methodological basis used to calculate the product supply chain
emissions. Input-output data and sectorial environmental extensions used in this paper
are based on a disaggregation of UK input-output tables which is structured in the form
of the two region Multi Regional Input-Output framework as presented in Wiedmann et
al. (2010) (See also (Wiedmann et al. 2011; Acquaye et al. 2012).
3.2 Applications: Case Studies
In this paper, case studies from the chemical (ferrous sulphate supply chain) and food (specifically,
the waste cooking oil supply chain) industries will be illustrated, in order to evaluate the performance
of different supply chain configurations. Circular supply chains, that assume a broader perspective of
the entire production system (in order to include post-production stewardship) will be compared to
linear production systems, just concerned with the production of a specific product (Linton et al.
2007). The first case study, dealing with the comparison of chemicals in the water industry, is based
primarily on empirical data (collected from the focal company and its suppliers), which is
complemented with secondary data sources. The second
14
case study, concerned with the production of biodiesel from cooking oils, is however solely based on secondary data sources.
3.2.1 Case Study I-Chemical Supply Chain (Ferrous sulphate)
Delivering quality drinking water and returning clean wastewater to the environment represent
energy intensive activities that have environmental implications in terms of carbon emissions on the
environment. A good portion of the environmental impact is related, in this context, to the use of
chemical compounds in the water supply and management process.
Among the main chemicals used in the water treatment processes, the following ones can
be mentioned: Ferric Chloride and Ferrous Sulphate which are alternate ferric salts; and
Sodium Hydroxide and Calcium Hydroxide which are alternate alkaline reagents used for
acid neutralization. For the purposes of this paper, the case study will analyse Ferrous
Sulphate and the Ferric Chloride supply chains which can both be used as coagulant. Data
for the chemical supply chains have been obtained from actual company sources from the
UK and are complemented with secondary data from Ecoinvent (2010).
In order to analyse the carbon emissions implications of a circular production process involving the
production of Ferrous Sulphate, which can be produced by using a by-product (the acidic waste) of
titanium dioxide as raw material, its supply chain is compared to the Ferric Chloride supply chain
which is produced from a mainly linear production system. For details of the process data used in
this case study, refer to the Appendix (sub-section Supplementary Data I).
3.2.2 Case Study II-Food Supply Chain (Waste Cooking Oil)
The second case study assesses the carbon emissions implications of two different supply chain
configurations using cooking oil for the production of biodiesel: a traditional (linear or forward) supply
chain based on a linear production system where virgin cooking oil is utilized in the production of a
secondary product (biodiesel) and a circular (open-loop) supply chain configuration based on the
recovery of value from waste cooking oil used in the production of biodiesel (Refer to Figure 4). Data
for these processes were sourced from Ecoinvent (2010) with details presented in the Appendix
(sub-section Supplementary Data II).
15
Cooking
Production
Biodiesel fromRefined
Product
Product
Product
Forward
Biodiesel from
Reverse Demand Demand VirginCooking Oil
Waste Cooking Oil Reprocessing
and Use and Use
End-of-Life Product
End-of-Life
ProductDisposal
Collection
(Waste)
Forward Supply Chain Configuratiion
Circular Supply Chain Configuration
Figure 4: Linear and Circular Cooking Oil Supply Chain Configurations in Biodiesel Production
4. Results and Discussions
4.1 Case Study Results
Based on the methodological framework of the Environmentally Extended MRIO Hybrid Model
presented in Section 3.12, the carbon emissions implications of the implementation of a circular
supply chain were examined for both the chemical (ferrous sulphate) and the food (waste cooking
oil) supply chains. This involved a calculation of the comparative change in lifecycle carbon
emissions of the whole supply chain. Tables 1, 2, 3, 4, 5 provide an overview of the breakdown of
the results. These are used to construct synthetic supply chain carbon maps (Refer to Figures 6, 7, 9
and 10). Within the carbon maps, process categories highlighted as hot-spots provide an indication
of the relative high carbon emission paths in the supply chain. These maps provide a visualisation
technique of illustrating supply chains in order to support decision-making. The following thresholds
for emissions ranking are adopted: Very High (shown in Red, it indicates inputs with emissions
greater than 10% of the total lifecycle emissions); High (orange, 5-10%); Medium (Yellow, 1-5%);
Low (Green, Less than 1%).
Coherently to the use of the Hybrid LCA, the study also calculates and assesses the
indirect carbon emissions impacts which consist of inputs from the wider economy, not
captured through process inputs. These are indicated on carbon maps as indirect inputs,
representing an aggregation of 18 sectors, namely: agriculture, forestry, fishing, mining,
food, textiles, wood and paper, fuels, chemicals, minerals, metals, equipment, utilities,
construction, trade, transport and communication, business services, personal services.
An analysis of the two case studies is presented in the following sub-sections.
16
4.1.1 Results: Chemical Supply Chain
The results compare the carbon emissions implications of using Ferrous Sulphate produced from a
by-product (acidic waste) of the production process of titanium dioxide, seen as the implementation
of a circular open-loop supply chain, compared to the use of Ferric Chloride which is produced from
a mainly linear production system. Results are presented in Tables 1 and 2, reporting the complete
breakdown of emissions across supply chain inputs; Figures 6 and 7 also illustrate category-
aggregated carbon maps for the two supply chains.
Based on the methodology presented in Section 3, the total Ferric Chloride emissions (0.9932 kg
CO2 eq/kg) were determined to be more than three times higher than the Ferrous sulphate (0.3282
kgCO2-eq/kg). Comparative levels of direct and indirect emissions are presented in Figure
5. As observed above, the difference in emissions between the two salts is significant; moreover, because
the Ferrous Sulphate is manufactured from acidic waste (a by-product of titanium dioxide production or,
alternatively, from steel production) emissions that would have generated for the neutralization of the acidic
waste and its disposal are also avoided. According to data retrieved from Ecoinvent (2010), the emissions
generated by the disposal of 1 kg residue from TiO2 production to landfill equals 0.3289 kgCO2-eq/kg. As seen
from Figure 5, the total emission of producing 1 kg of Ferrous Sulphate is practically the same as that the
emissions of disposing 1 kg of residue from Titanium Dioxide. The use of Ferrous Sulphate produced by this
circular process is not only generating less emission than the linear production system of Ferric Chloride supply
chain, but also preventing the occurrence of emissions generated by the disposal of waste.
Ferric Chloride 0.89100.1022
Total=0.9932
Direct
Ferrous Sulphate 0.2405 0.0877 IndirectTotal=0.3282
0.0 0.2 0.4 0.6 0.8 1.0 1.2
kg CO2-eq/kg
Figure 5: Comparative levels of emissions by Ferrous Sulphate and Ferric Chloride supply chains
17
The breakdown of CO2-eq emissions for the circular configuration (Ferrous Sulphate) is
presented in Table 1; the carbon map in illustrated in Figure 6. It can be observed that electricity
is the main “hotspot” since it is the main input used in the purification of the by-product (acidic
waste). It contributes to 35.94% of the total emissions, followed by the operations of the
chemical plant (15.07%) and outbound road transport (12.10%). Direct and indirect inputs
account, respectively, for 73.28% and 26.72% of the total emissions. In the case of the Ferric
Chloride (see Table 2 and Figure 7), the main hot-spot is represented by the mercury-cell
production process of chlorine (a very electricity-intensive process). This contributes towards
54.00% of the emissions, followed by the chemical plant (12.45%), chlorine production through
membrane-cell process (9.84%) and road transport from supplier (8.45%). It was also
determined that direct inputs (process emissions) and upstream indirect emissions account,
respectively, for 89.71% and 10.29% of the total emissions.
Input Category Quantity UnitEmissions Intensity Emissions
Emissions %(kgCO2-eq/unit) (kgCO2-eq)Electricity, medium
Utilities 0.2220 kWh 0.5314 0.1180 35.94%voltage, at gridChemical Plant, Organic
0.0000 Unit 123660000.0000 0.0495 15.07%Organics ChemicalsTransport, lorry 3.5-20t,
Transport 0.1420 tkm 0.2798 0.0397 12.10%fleet average, outboundChemicals Indirect N/A N/A N/A 0.0289 8.81%
Transport, lorry 3.5-20t,Transport 0.1000 t.km 0.2798 0.0280 8.52%
fleet average, inboundUtilities Indirect N/A N/A N/A 0.0227 6.91%
Transport andIndirect N/A N/A N/A 0.0151 4.60%
CommunicationMining Indirect N/A N/A N/A 0.0105 3.20%
Transport, transoceanicTransport 0.5000 tkm 0.0054 1.64%
freight ship 0.0108Fuels Indirect N/A N/A N/A 0.0033 1.00%
Metals Indirect N/A N/A N/A 0.0020 0.60%
Minerals Indirect N/A N/A N/A 0.0020 0.60%
Agriculture Indirect N/A N/A N/A 0.0016 0.50%
Business Services Indirect N/A N/A N/A 0.0007 0.20%
Trade Indirect N/A N/A N/A 0.0003 0.10%
Equipment Indirect N/A N/A N/A 0.0003 0.10%
Wood and Paper Indirect N/A N/A N/A 0.0003 0.10%
Personal Services Indirect N/A N/A N/A 0.0000 0.00%
Construction Indirect N/A N/A N/A 0.0000 0.00%
Textiles Indirect N/A N/A N/A 0.0000 0.00%
Food Indirect N/A N/A N/A 0.0000 0.00%
Fishing Indirect N/A N/A N/A 0.0000 0.00%
Forestry Indirect N/A N/A N/A 0.0000 0.00%
Total Emissions(kgCO2-eq/kg] 0.3282 100.00%
Table 1: Supply Chain Emissions breakdown for Ferrous sulphate
18
EmissionsEmissions Emissions
Input Category Quantity Unit Intensity(kgCO2-eq) %
(kgCO2-eq/unit)Chlorine, gaseous, mercury
Inorganic Chemicals 0.4920 kg 1.0900cell 0.5363 54.00%Chemical plant, organics Organic Chemicals 0.0000 unit 123660000.0000 0.1237 12.45%Chlorine, gaseous, membrane
Inorganic Chemicals 0.1060 kg 0.9220cell 0.0977 9.84%Transport, lorry 3.5-20t, fleet
Transport 0.3000 tkm 0.2798 0.0839average (from supplier) 8.45%Chemicals (Indirect) Indirect N/A N/A N/A 0.0309 3.11%Utilities (Indirect) Indirect N/A N/A N/A 0.0248
2.50%Hydrochloric acid, 30% in
Inorganic Chemicals 0.0220 kg 0.8530H2O 0.0188 1.89%Transport and
Indirect N/A N/A N/A 0.0173Communication (Indirect) 1.74%Iron scrap Metals 0.3280 kg 0.0420
0.0138 1.39%Mining (Indirect) Indirect N/A N/A N/A 0.0116 1.17%Transport, lorry 3.5-20t, fleet
Transport 0.0220 tkm 0.2800average 0.0062 0.62%Business Services (Indirect) Indirect N/A N/A N/A 0.0060
0.60%Transport, transoceanic
Transport 0.3930 t.km 0.0108 0.0042freight ship 0.43%Fuels (Indirect) Indirect N/A N/A N/A 0.0037 0.37%Disposal, sludge from FeCl3production, 30% water, tounderground deposit Waste Management 0.0060 tkm 0.6040 0.0036 0.36%Electricity, medium voltage,
Utilities 0.0186 kWh 0.1310at grid 0.0024 0.25%Minerals (Indirect) Indirect N/A N/A N/A 0.0024
0.24%Metals (Indirect) Indirect N/A N/A N/A 0.0023 0.23%Agriculture (Indirect) Indirect N/A N/A N/A 0.0017 0.17%Trade (Indirect) Indirect N/A N/A N/A 0.0005 0.05%Wood and Paper (Indirect) Indirect N/A N/A N/A 0.0004
0.04%Tap water, at user Utilities 1.2300 kg 0.0003 0.0004 0.04%Equipment (Indirect) Indirect N/A N/A N/A 0.0003
0.03%Food (Indirect) Indirect N/A N/A N/A 0.0001 0.01%Construction (Indirect) Indirect N/A N/A N/A 0.0001 0.01%
Textiles (Indirect) Indirect N/A N/A N/A 0.0001 0.01%Forestry (Indirect) Indirect N/A N/A N/A 0.0000
0.00%Fishing (Indirect) Indirect N/A N/A N/A 0.0000 0.00%Personal Services (Indirect) Indirect N/A N/A N/A 0.0000
0.00%Total
Emissions[kg CO2-eq]/kg] 0.9932
Table 2: Supply Chain Carbon Emissions breakdown for Ferric Chloride
19
Figure 6: Supply Chain Carbon map for Ferrous sulphate
Figure 7: Supply Chain Carbon Map for Ferric Chloride
4.1.2 Results: Food Supply Chain
For a food supply chain, achieving circularity allows meeting two important requirements. Firstly,
circular supply chains divert end-of-life products from being considered waste and hence discarded;
also, the secondary resources that result from the reprocessing of these end-of-life products replace
primary resources in forward supply chains (Geyer and Jackson 2004). As a result, in addition to the
carbon emission implications of the supply chain, virgin resources used and potential waste
recovered have been also examined from a lifecycle assessment perspective.
A comparison between a linear supply chain based on a production system where virgin cooking oil
is utilized in the production of a final product (biodiesel) and a circular supply chain configuration
based on the recovery of value from waste cooking oil for the production of the same final product is
presented in Table 3. The complete breakdown of the supply chain analysis is reported in Tables 4
and 5. A synthetic breakdown of the emissions (between direct and indirect ones) is presented in
Figure 8, with aggregated carbon maps shown in Figures 9 and 10.
20
It can be observed from Figure 8 that the circular supply chain (which consists of the
collection and reprocessing of waste cooking oil and its use in the production of biodiesel)
reports a total lifecycle emissions value of 0.7602 kg CO2-eq per kg of biodiesel. On the
other hand, the linear supply chain has a total lifecycle emissions value of 1.2737 kg CO 2-
eq per kg of biodiesel. It can clearly be observed that the there is an environmental gain of
0.5135 kg CO2-eq per kg of biodiesel in terms of avoided emissions produced when the
circular supply chain is benchmarked against the linear alternative.
Linear Circular
Environmental Indicator Units Supply Chain Supply Chain
Total kgCO2-eq/kg 1.2737 0.7602Emissions
Virgin Veg. Oil (68.31%) Vegetable Oil (37.05%)
CarbonUpstream Mining (7.38%) Upstream Mining (11.25%)
Identified Methanol (6.59%) Methanol (10.40%)
Emissions% of
Hot-SpotskgCO2-eq/kg Heat, Gas, >100kW Heat, Gas, >100kW (7.57%)
(top five listed)(4.03%)
Upstream Utilities Upstream Utilities (4.92%)(3.13%)
Resource: Virgin resource used Kg 0.964 0
Waste: Recovered Waste Kg 0 0.895
Table 3: Summary of results for environmental indicators for biodiesel linear and circular supply chains
1.4Total=1.2737
1.20.2099
1 Difference=0.5135
0.8Total=0.7602
0.60.2062 Indirect Emissisons
Direct Emissions1.0638
0.4
0.55400.2
0
Circular Linear Supply
Supply Chain Chain
Figure 8: Total (including direct and indirect) carbon emissions breakdown of the supply chains
21
In managing product-level supply chain impacts, focal firms can implement low carbon interventions
and measures that can directly reduce the impacts of inputs classed as direct supply chain inputs.
On the other hand, although the focal firm may not be able to directly address the indirect impacts
associated with the product supply chain, it can be able to: (i) gain a better understanding of the
overall emissions profile of activities; (ii) identify emissions reduction opportunities; (iii) track
performance and engage suppliers through closer supply chain collaborations. The direct supply
chain impacts for the linear and circular supply chains represents the biggest potential for emissions
reduction since it constitutes the bigger proportion of the total lifecycle supply chain emissions
(83.51% and 72.87% respectively). From a pure environmental sustainability perspective, a focal
firm can understand that in the circular supply chain of waste cooking oil, where value in the form of
refined vegetable oil is recovered (Table 4), the biggest potential to reduce the carbon emissions
potential directly from their perspective lies on intervention options targeted at:
• the use of refined vegetable oil (0.3705 kg CO2-eq per kg or 37.05%)
• upstream mining: 0.0855 kg CO2-eq per kg or 11.5% (from activities related to extraction of raw materials for energy production, minerals for fertilizer, etc.);
• use of methanol in the biodiesel esterification process (0.0791 kg CO2-eq per kg or 10.40%);
• use of industrial gas furnaces (>100kW) for heat production: 0.0716 kg CO2-eq per kg or 7.57%;
• upstream utilities: 0.0374 kg CO2-eq per kg or 4.92% (from agricultural activities related to the raw materials used in the production of the vegetable oil).
• upstream agriculture: 0.0275 kg CO2-eq per kg or 3.62% (from agricultural activities
related to the raw materials used in the production of the vegetable oil).
On the other hand, the carbon hot-spots analysis for the linear supply chain (Table 5)
shows that the use of virgin vegetable oil (0.8701 kg CO2-eq per kg or 68.31%),
upstream mining (0.0940 kg CO2-eq per kg or 7.38%), use of methanol (0.0840 kg
CO2-eq per kg or 6.59%), use of industrial gas furnace (>100kW) (0.0513 kg CO2-eq
per kg or 4.03%), upstream utilities (0.0399 kg CO2-eq per kg or 3.13%) and upstream
agriculture (0.0296 kg CO2-eq per kg or 2.33%) are the top-ranking hotspots.
Interestingly, for both the linear and circular supply chains, with the exception of the vegetable
oil (virgin resource for the forward supply chain: 0.8701 kg CO2-eq per kg; refined resource
22
recovered from waste for the reverse one: 0.3705 kg CO2-eq per kg), the other identified hot-spots
are very similar in terms of their carbon emissions impacts. This goes to reaffirm the environmental
benefits deriving from the implementation of circular supply chain strategies to recover value from
waste and re-use it where applicable in the production of secondary products.
Circular supply chains provide the benefit of diverting used products from being discarded as waste
through the recovery of value and reused in the production of secondary products. The benefit of
these is clearly noticed in the summary of results presented in Table 3. For every kg of biodiesel that
is produced, the forward supply chain which is based on the principles of a linear production
paradigm uses 0.964 kg of virgin cooking oil. This is in contradiction to the circular supply chain,
which uses 0.895 kg of refined cooking oil recovered from waste cooking oil which otherwise may
have illegally ended up in the environment or in waste disposal sites. A crucial supply chain
implication of the linear production paradigm is the creation of a direct competition between the
supply chains of food for human consumption and food as a feedstock for bioenergy production.
When the 0.964 kg of virgin cooking oil used for biodiesel production are scaled up, the risk posed to
the food supply chain becomes clearer. For instance, the US Department for Agriculture (2011)
reports that about 15% of 2010/11 global soy oil production was used for biodiesel production. This
direct competition between food and bioenergy may also result in higher prices for food (Ciaian and
Kancs 2011), land use issues (Rathmann et al. 2010) and food security (Schmidhuber and Tubiello
2007), thus threatening the sustainability of food supply chains. Implementing circular supply chains
for biodiesel production represents also a way to address this challenge, preserving virgin resources.
23
Input Category Quantity UnitEmissions Intensity Emissions Emissions
(kgCO2-eq/unit) (kgCO2-eq) %
Vegetable oil, fromBiomass/Fuels 0.8950 kg 0.4140 0.3705 37.05%
waste cooking oil
MiningIndirect N/A N/A N/A 0.0855 11.25%
Methanol Biomass/Fuels 0.0989 kg 0.7998 0.0791 10.40%Heat, gas, furnace
Utilities 0.8040 MJ 0.0716 0.0576 7.57%>100kWUtilities Indirect N/A N/A N/A 0.0374 4.92%
AgricultureIndirect N/A N/A N/A 0.0275 3.62%
Electricity, mediumUtilities 0.0368 kWh 0.5314 0.0196 2.57%
voltage, at grid
Potassium hydroxideInorganic
0.0099 kWh 1.9059 0.0188 2.48%Chemicals
ChemicalsIndirect N/A N/A N/A 0.0176 2.31%
Transport andIndirect N/A N/A N/A 0.0115 1.51%
Communication
FoodIndirect N/A N/A N/A 0.0107 1.41%
Phosphoric acid, 85% Inorganic0.0040 M3 1.4201 0.0057 0.75%
in H2O Chemicals
MetalsIndirect N/A N/A N/A 0.0046 0.60%
MineralsIndirect N/A N/A N/A 0.0046 0.60%
FuelsIndirect N/A N/A N/A 0.0031 0.40%
Business ServicesIndirect N/A N/A N/A 0.0015 0.20%
Transport, freight, rail Transport 0.0677 tkm 0.0207 0.0014 0.18%
Transport, lorry >16t,Transport 0.0103 tkm 0.1336 0.0014 0.18%
fleet average
TradeIndirect N/A N/A N/A 0.0008 0.10%
Equipment Indirect N/A N/A N/A 0.0008 0.10%Wood and Paper Indirect N/A N/A N/A 0.0008 0.10%Tap water, at user Utilities 0.0238 kg 0.0003 0.0000 0.00%
Waste managementWaste
0.0001 m3 0.0149 0.0000 0.00%Management
Personal Services Indirect N/A N/A N/A 0.0000 0.00%
ConstructionIndirect N/A N/A N/A 0.0000 0.00%
TextilesIndirect N/A N/A N/A 0.0000 0.00%
FishingIndirect N/A N/A N/A 0.0000 0.00%
Forestry Indirect N/A N/A N/A 0.0000 0.00%Total Emissions[kg CO2-eq]/kg] 0.7602
Table 4: Circular Supply Chain Emissions breakdown for biodiesel production from waste cooking oil
24
EmissionsEmissions
Input Category Quantity Unit Intensity Emissions %(kgCO2-eq)
(kgCO2-eq/unit)Soybean oil Biomass/Fuels 0.9460 kg 0.9198
0.8701 68.31%Mining Indirect N/A N/A N/A 0.0940 7.38%Methanol, at
Biomass/Fuels 0.1050 kg0.7998
regional storage 0.0840 6.59%Heat, gas,
Utilities 0.7170 MJ 0.0716furnace >100kW 0.0513 4.03%
Utilities Indirect N/A N/A N/A 0.0399 3.13%Agriculture Indirect N/A N/A N/A 0.0296 2.33%Electricity,medium voltage, Utilities 0.0389 kWh 0.5314at grid 0.0207 1.62%
Chemicals Indirect N/A N/A N/A 0.0155 1.21%Phosphoric acid, Inorganic
0.0105 kg 1.420185% in H2O Chemicals 0.0149 1.17%Heat, hard coal
Utilities 0.0960 MJ 0.1313furnace 1-10MW 0.0126 0.99%Transport andCommunication Indirect N/A N/A N/A 0.0116 0.91%
Metals Indirect N/A N/A N/A 0.0052 0.40%Minerals Indirect N/A N/A N/A 0.0052 0.40%
Fuels Indirect N/A N/A N/A 0.0039 0.30%Hydrochloric
Inorganicacid, 30% in 0.0042 MJ 0.8529
ChemicalsH2O 0.0036 0.28%Heat, light fueloil, furnace Utilities 0.0374 MJ 0.09101MW 0.0034 0.27%Transport, lorry>16t, fleet Transport 0.0120 tkm 0.1336average 0.0016 0.13%Transport,
Transport 0.0716 tkm 0.0207freight, rail 0.0015 0.12%Business Services Indirect N/A N/A N/A 0.0013 0.10%Trade Indirect N/A N/A N/A 0.0013 0.10%Equipment Indirect N/A N/A N/A 0.0013 0.10%Wood and Paper Indirect N/A N/A N/A 0.0013 0.10%Tap water Utilities 0.0252 kWh 0.0003
0.0000 0.00%Waste Waste
0.0001 m3 0.0149management Management 0.0000 0.00%
Personal Services Indirect N/A N/A N/A 0.0000 0.00%Construction Indirect N/A N/A N/A 0.0000 0.00%Textiles Indirect N/A N/A N/A 0.0000 0.00%Food Indirect N/A N/A N/A 0.0000 0.00%Fishing Indirect N/A N/A N/A 0.0000 0.00%Forestry Indirect N/A N/A N/A 0.0000 0.00%
Total Emissions[kg CO2-eq]/kg] 1.2737 100.00%
Table 5: Linear Supply Chain Emissions breakdown for biodiesel production from non-waste cooking oil
25
Figure 9: Circular configuration carbon map of biodiesel production from waste cooking oil
Figure 10: Circular configuration carbon map of biodiesel production from non-waste cooking oil
4.2 Implications to Sustainable Supply Chain Management
The principles of circular economy assume that the raw materials used in
production systems must be both technical and biological. These raw materials
should not have a negative impact on the environment and should be regenerative,
hence returning to the ecosystem without treatments required to rebuild the natural
capital. In essence, there is no degeneration and environmental impact of materials
within a production system which operates in a restorative cycle.
Since the concept of circular economy is subject to the universal laws of thermodynamics, there
would still be a degeneration of the raw materials in a production system over time. This is due to the
fact that the circular flows of exchanges are coupled with the physical flows of matter-energy, which
are not circular (Stokes 1994). Hence, resource flows are ultimately linear and
26
unidirectional, beginning with the depletion of low entropy resources from the environment and
ending with the pollution of the environment with high entropy waste (Daly 1985). Nevertheless, the
implications of circular economy can be aligned to sustainable supply chain management, by
noticing that, although supply chains cannot be theoretically circular, the underlining principle of
using the higher entropy waste as substitute for lower entropy virgin materials could form a pivotal
underlining principle for greener production systems. This holds true as argued by Beinhocker
(2006), who suggested that in order to have a sustainable economy where damage to the
environment is reduced, overall entropy of our earth system must be reduced. As such, the circular
economy concept can describe a framework in which businesses operating within the same supply
chain and beyond can engage with sustainability activities to create shared value.
4.3 Implications to Market Dynamics
The transition towards a sustainable economy is a challenging process, as a wide
spectrum of constraints emerges. The case studies reported above have shown that
some obvious environmental advantages can be achieved by utilizing circular rather
than linear supply chains. However, the economic viability of the circular supply chains
may be questionable, as mechanisms to enact them may be very fragile.
As regards the case study from the chemical supply chain, it has been shown that total
emissions related to the linear supply chain (0.99kg CO2 eq/kg) are more than three times
higher than emissions for the reverse one (0.3285 kg CO2 eq/kg), and that advantages can be
achieved in terms of diversion of waste from landfill and virgin resources preservation.
However, it has to be considered that, as mentioned above, manufacturing of Ferrous Sulphate
relies on the acidic waste from the production of Titanium Dioxide (TiO2) by the sulphate
method. In 2009 the production of TiO2 by the sulphate process stopped in the UK; therefore,
the metal slag used in the circular supply chain is imported from overseas (Frost and Sullivan
2012). This has a detrimental impact in the cost and production of the ferrous sulphate. Data
shows that the price of Ferrous Sulphate has increased by 80% in the last 5 years and that the
annual production capacity in UK has declined by 15%. Demand is expected to outstrip its offer
in the next years (Frost and Sullivan 2012). Price and the supply of Ferrous Sulphate could
represent a problem in the future, making the circular alternative less attractive than the linear
one (based on Ferric Chloride) in terms of economic convenience.
27
In the case of the biodiesel production, availability of used cooking oil to be recycled is not
a problem, due to abundant and widespread supply. However, manufacturing costs may
make some issues arise: indeed, currently, in the UK, biodiesel costs around 75p/litre to
produce compared with petrodiesel at 52p/l (Smith et al. 2013). If biodiesel is made from
100% verified renewable sources (like used cooking oil), it is eligible for government
support (24p/l); this puts the biodiesel production at a 1p advantage to petrodiesel. The risk
here is the longevity of the government support regime, together with the cost of the used
cooking oil, currently reported to be between 25 and 60p/l depending on the quality (Smith
et al. 2013). Margins are fairly tight for the producers; collectors (who operate on a very
fragmented market) may operate at even tighter margins.
Therefore, both the analysed cases highlight that, while environmental benefits
may be obvious, the implementation of circular supply chains may be challenging
from an economic point of view. Thus, bottom-up initiatives at a supply chain level
might need to be incentivized through some form of top-down governmental
support (such as in the case of the biodiesel supply chain).
4.4 Policy and Societal Implications
In terms of the policy implications, as a result of the increasing need to address unsustainable
patterns of resource consumption and waste production, national governments in the European
Union (European Commission, 2014) and China (Geng and Sarkis, et al, 2013), along with
international agencies (OECD, 2014) are beginning to recognise the need to adopt production
systems inspired by the circular economy concept. A direct implication of this change on society
would be a gradual shift from an economy based on the sale of goods to an economy based on the
sale of performance (EMG, 2013). For businesses, a rethink of the value chain cycles and a whole
system design approach would play significant role in operational practices.
These positive implications of circular economy concepts to policy strengthen the overall green
agenda. Indeed, an example of the increasing alignment of circular economy concepts and
sustainable supply chain management practices is provided by the fact that the United Nations
Environment Programme (2006) reported that the Chinese implementation of the circular economy
initiative is undertaken within a Sustainable Consumption and Production program. Such a
programme strives to meet resource consumption and waste challenges through cleaner production,
industrial ecology and life-cycle management; all fundamental principles of
28
sustainable supply chain management (Sarkis, 2003; Zhu et al, 2007; Acquaye and Yamoah et al, 2014).
4.5 A Systems Approach for the transition towards a more sustainable economy
The transition towards a sustainable economy is a challenging process, as a wide spectrum of
constraints, including political, cultural, human, economic structures and technological limitations
emerge. This transition can be viewed from two extreme perspectives; a top-down approach and a
bottom-up one (Refer to Figure 11). This paper has presented a bottom-up view to the initiation of
environmental sustainability, starting from the product-level (Type IV System perspective) and
stimulating impacts across higher-level systems. This follows Sikdar (2003) identification of four
types of sustainable systems of which System Type IV (products) is a subset of System Type III
(Businesses) which in turn is a sub-set of System Type II (Regions/Cities). An aggregation of regions
and cities then forms System Type I (The Earth). This approach offers opportunities to develop
sustainable business models benefiting from environmental assessments at a much disaggregated
level of analysis (product-level systems). The framework provides a first step in decision support,
thereby enabling businesses to choose appropriate and specific green business models in any low
carbon transition plan. These green business models may include radical and systemic eco-
innovations (Demirel and Kesidou, 2011), product-service systems (Roy and Baxter 2009), industrial
symbiosis (Eckelman and Chertow, 2013), cradle-to-cradle systems (Braungart et al. 2007).
Compared to top-down models where international and national policies are expected to
diffuse down to companies and their operations and supply chains, the bottom-up
approach works on the principle that, informed by environmental assessments, sustainable
solutions at the product level can be aggregated across businesses in order to improve
their sustainability and, ultimately, at the one of the wider economic systems. Top-down
policies should therefore be also aimed at enhancing bottom-up initiatives.
29
TypeType
Type II Type IDecision Support III
IV
Environmental Indicators and
Boun
dary
Carbon Maps
Hybrid Assessment Model
Impa
ct
Down-Top
Process
Input- Model
OutputAnalysis
Analysis
Product Lifecycle EnvironmentalAssessment Framework
Transfer and Aggregation of Solutions/Policies
Green and FeedbackSustainableStrategies
Figure 11: Bottom-Up Sustainable Pathway Framework. (The types of System Perspective to
Sustainability: Type I (Earth); Type II (Regions/Cities); Type III (Businesses); Type IV (Sustainable
Technologies or Product Level); adapted from Sikdar (2003)
Some of the practical challenges that such a framework would face are concerned with the
implementation of the output of the analysis and the scaling up of solutions across a wider context.
These are respectively indicated in the framework diagram (Figure 11) as Impact Boundary and the
Transfer and Aggregation of Solutions/Policies. In particular, the bottom-up approach illustrated in
this study could also be adopted by policy-makers and other relevant stakeholders in regional
context as a tool to identify and encourage greening and decarbonisation opportunities to be
promoted through appropriate schemes and programmes. Indeed, by identifying synergies between
supply chains, relevant bodies (such as Central Government Departments, Local Authorities and
Chambers of Commerce) could encourage the use of by-products (derived by some product supply
chains) as raw materials to be re-processed in further supply chains, favouring the transition towards
a more sustainable economy by reducing virgin
30
resources usage, carbon emissions and waste production; such bodies could encourage this transition by improving the economic convenience of these options.
Optimizing materials and energy flows among facilities within specific regions or industrial
ecosystems is a basic industrial ecology strategy. In this context, external stakeholders (such as
local and central governments, governmental agencies, industrial bodies) could play a “facilitator”
role, by helping the matching of virgin resources demand and equivalent by-products supply, by
developing integrated approaches to eco-industrial development. Examples of these approaches
include the establishment of appropriate eco-industrial parks for resource recovery and tax
exemption policies for companies involved in reverse supply chain activities (see, for instance:
Roberts 2004; Gibbs and Deutz 2007). This, as argued by Mathews and Tan (2011) would provide
the required top-down support to complement bottom-up initiatives.
5. Conclusions
In the last decades, green and sustainable supply chain management practices have
emerged, trying to integrate environmental concerns into organisations by reducing
unintended negative consequences of production and consumption processes.
In parallel to this, the circular economy discourse has been propagated in the industrial
ecology literature and practice. Circular economy pushes the frontiers of environmental
sustainability by emphasising the idea of transforming products in such a way that
there are workable relationships between ecological systems and economic growth.
Therefore, circular economy is not just concerned with the reduction of the use of the
environment as a sink for residuals, but rather with the creation of self-sustaining
production systems in which materials are used over and over again.
Within this context, the main objective of the paper has been the verification of a
potential enhancement of sustainable supply chain management practices by aligning
them to circular economy concepts. By using a case-based approach (adopting
examples from the chemical and food industries) the study has investigated the
environmental implications related to the implementation of circular production
systems, providing a comparison with traditional linear production alternatives.
The analysis was formulated using a Hybrid LCA methodology, combining both process LCA and the
environmentally extended multi-regional input-output (MRIO) hybrid model. This led to the
calculation and analysis of direct, indirect and total lifecycle emissions, of resource used and
31
recovered waste. Also, supply chain carbon maps were derived, providing a holistic visibility of the supply chain.The paper has asserted that integrating the core principles of circular economy within green supply
chain management can provide clear advantages from an environmental point of view. However, the
implementation of circular supply chains may be challenging from an economic point of view. Thus,
bottom-up initiatives at a supply chain level might need to be incentivized through some form of top-
down governmental support (such as in the case of the biodiesel supply chain). For this reason, the
paper also discussed a theoretical base for the potential implementation of environmental
sustainability measures inspired by circular economy concepts, starting from the product-level of the
value chain. As such, it is envisaged that the paper would strengthen the knowledge-base of green
supply chain management practice.
Further researches will be addressed to widen the empirical evidence, by developing
further case studies related to the assessment of circular production systems. From a
methodological point of view, more relevant environmental indicators could be
considered in order to perform the comparison between linear and circular systems.
Also, attention will be devoted to the cited economic implications, in many cases
representing the main challenge for the implementation of circular economy initiatives.
Acknowledgements
The research related to this paper has been partially supported by the project entitled Promoting
Environmentally Sustainable SMEs – PrESS (Project Number: 538851-LLP-2013-UK-ERASMUS-
EQR), funded by the Erasmus Lifelong Programme from the European Commission.
The authors thank the anonymous referees that carefully reviewed an initial and short
version of this paper, submitted to the XXI EurOMA Conference (held in Palermo, Italy,
in June 2014). The authors would also like to thank colleagues who, in that occasion,
provided useful comments and insights in improving the quality of the paper.
32
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Highlights
- Circular and Linear Supply Chains are introduced- Through two case studies, their environmental performances are assessed and compared
- A Hybrid LCA methodology is utilized for performing the assessment- Managerial and Policy implications are discussed
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